Citation: Transl Psychiatry (2014) 4, e428; doi:10.1038/tp.2014.72 2014 Macmillan Publishers Limited All rights reserved 2158-3188/14
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JL Wang1,2,3, SM Shamah4, AX Sun5, ID Waldman6, SJ Haggarty1,2,3,7 and RH Perlis1,2,3
Development of novel treatments and diagnostic tools for psychiatric illness has been hindered by the absence of cellular models of disease. With the advent of cellular reprogramming, it may be possible to recapitulate the disease biology of psychiatric disorders using patient skin cells transdifferentiated to neurons. However, efciently identifying and characterizing relevant neuronal phenotypes in the absence of well-dened pathophysiology remains a challenge. In this study, we collected broblast samples from patients with bipolar 1 disorder, characterized by their lithium response (n = 12), and healthy control subjects (n = 6). We identied a cellular phenotype in reprogrammed neurons using a label-free imaging assay based on a nanostructured photonic crystal biosensor and found that an optical measure of cell adhesion was associated with clinical response to lithium treatment. This
Translational Psychiatry (2014) 4, e428; doi:10.1038/tp.2014.72; published online 26 August 2014
INTRODUCTION
Bipolar disorder (BD) is a debilitating psychiatric condition characterized by periods of elevated or irritable mood and depression.1,2 Since its serendipitous discovery over 50 years ago, lithium remains the gold-standard treatment for long-term management of BD.3 However, lithium only benets a subset of individuals with this illness.4
There is thus a pressing need for better therapeutics, as well as diagnostic tools which might predict patient drug response. The challenge has been identifying a distinct cellular pathophysiology associated with the disorder. Investigators have generally been limited to the study of peripheral blood cells or postmortem brain samples, each of which presents limitations, both in determining relevance to the neurobiology of BD and in deriving cellular models which scale for screening applications and diagnostic development.
Recent developments in reprogrammed adult human cells make it possible to derive neuronal cells directly from more accessible patient tissues, either through an induced pluripotent stem cell intermediate57 or via direct transdifferentiation of human broblasts to neurons.810 These reprogrammed cellular models have been demonstrated to recapitulate disease pathology observed in primary human brain cells for neurodegenerative disorders such as Alzheimers disease and Parkinsons disease.11
Efciently identifying and characterizing relevant neuronal phenotypes in the absence of well-dened pathophysiology remains a challenge. Here, we hypothesized that lithium response in BD patients would have a measurable cellular correlate in patient broblast lines directly transdifferentiated to neurons using a high-throughput, label-free imaging platform.
OPEN
ORIGINAL ARTICLE
Label-free, live optical imaging of reprogrammed bipolar disorder patient-derived cells reveals a functional correlate of lithium responsiveness
cellular phenotype may represent a useful biomarker to evaluate drug response and screen for novel therapeutics.
In this label-free cellular assay, the signal generated is a measure of adhesion of the cell to the imaged surface, mediated by cell surface integrins and extracellular matrix components coated on the surface of biosensors. Once adhered to the biosensors, cells respond to a wide variety of stimuli that result in the modulation of cell adhesion mediated by changes in the activation state of integrins through a process referred to as inside-out signaling.12 These changes can be measured and quantied with high sensitivity and serve the basis of functional cell-based assays for identifying compounds that can modulate specic ligandreceptor signaling pathways.13,14 The BIND Scan
ner used in our experiments has sufciently high spatial and temporal resolution that single cell morphologies can be segmented and a number of cellular phenotypes quantied, including cell migration, membrane rufing, mitotic events, apoptosis, proliferation and immune cell activation.14 This makes the platform particularly advantageous for characterizing disease-associated cellular phenotypes, which may be applied for high-throughput screening or diagnostic efforts. In our study, we examined changes in cell count, cell fraction, cell perimeter and peak wavelength value (PWV), which is a measure of the attachment of the cells to the surface. We found that changes in PWV were associated with patient lithium response in broblasts transdifferentiated to neuronal-like cells.
MATERIALS AND METHODS
Patient sample collection
Skin samples from a convenience sample of patients with bipolar 1 disorder and a history of lithium treatment (n = 12) and matched screened
1Department of Psychiatry, Center for Experimental Drugs and Diagnostics, Massachusetts General Hospital, Boston, MA, USA; 2Center for Human Genetics Research, Massachusetts General Hospital, Boston, MA, USA; 3Stanley Center for Psychiatric Research, Broad Institute of MIT & Harvard, Cambridge, MA, USA; 4X-Body Biosciences, Waltham, MA, USA; 5Howard Hughes Medical Institute, Stanford University School of Medicine, Stanford, CA, USA; 6Department of Psychology, Emory University, Atlanta, GA, USA and
7Chemical Neurobiology Laboratory, Department of Neurology, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA. Correspondence: Dr RH Perlis, Department of Psychiatry, Center for Experimental Drugs and Diagnostics and Center for Human Genetics Research, Simches Research Building, Massachusetts General Hospital, 185 Cambridge Street, 6th Floor, Boston, MA 02114, USA.
E-mail: mailto:[email protected]
Web End [email protected] Received 8 July 2014; accepted 14 July 2014
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healthy control subjects (n = 6) were collected after obtaining written informed consent as part of a protocol approved by the Partners Institutional Review Board. All subjects were evaluated using the structured clinical interview for DSM-IV (SCID-I) conducted by an experienced psychiatrist. Lifetime lithium response was dened by clinical interview and review of all available records using the Alda scale for long-term treatment response in research subjects with bipolar disorder,15 which assigns a 010 score (Criterion A) for clinical improvement during lithium treatment compared with time not treated with lithium, in terms of episode frequency, severity and duration. On this scale, 10 indicates full and sustained remission with lithium treatment, whereas 0 indicates no change or clinical worsening. This scale, although retrospective, has been shown to be a reliable and valid summary measurement of lithium responsiveness. As the utility and weighting of the B criteria, relating to features such as compliance, is less clear,16 we selected extreme cases based upon A criteria, excluding individuals who were nonadherent with lithium based upon the relevant B criterion. We grouped BD patients into a lithium responsive group if the Alda score was 710, and lithium nonresponsive if the Alda score was 14.
Clinical proceduresAfter informed consent was obtained and clinical interview was completed to conrm eligibility, a dermal biopsy was obtained by a physician investigator. Following subcutaneous injection of lidocaine 1%, the physician used a standard 3.0 or 4.0 mm punch tool to obtain a sample from the medial surface of the nondominant forearm. Fibroblasts were then expanded using standard tissue culture technique.
Lentivirus productionHigh-titer lentiviral stocks were generated using 293T/17 cells (ATCC,
Manassas, VA, USA). Cells were plated on poly-L-Lysine (Sigma, St. Louis, MO, USA) coated tissue culture vessels and grown to 95% conuence in D10 medium containing Dulbeccos Modied Eagle Medium (Invitrogen, Carlsbad, CA, USA) with 10% fetal bovine serum (Gemini Bio-Products, West Sacramento, CA, USA) and 1% Pen-Strep (Invitrogen), then transfected with lentiviral packaging plasmids pCMV2dR8.2 (Addgene plasmid 8455, Cambridge, MA, USA)17 and pMD2.G (Addgene plasmid 12259) and one of the lentivectors containing transgenes for miR-9/9*-124, NEUROD2, ASCL1 or MYT1L using Lipofectamine 2000 (Invitrogen) in Optimem (Invitrogen). After 46 h, the medium was changed back to D10 medium, collected after 48 h and ultracentrifuged at 19 500 r.p.m. for 2 h to make high-titer lentiviral stocks.
Induced neuronal-like cellsFibroblasts were transduced with lentiviruses containing transgenes for miR-9/9*-124, NEUROD2, ASCL1 and MYT1L as previously described.9 Fibroblasts were plated at a density of 1015 k cm2 in broblast medium (Dulbeccos Modied Eagle Medium; Invitrogen) containing 10% fetal bovine serum (FBS; Gemini Bio-Products), nonessential amino acids, glutamate and penicillin/streptomycin (Invitrogen) on plates coated with0.1% gelatin (Millipore, Billerica, MA, USA). Fibroblast medium contained DMEM (Invitrogen) with 10% FBS (Gemini Bio-Products), 1% Pen-Strep (Invitrogen, Grand Island, NY, USA), 1% non-essential amino acids (Invitrogen) and 1% 200 mM L-glutamine (Invitrogen). Infection with the four lentiviruses occurred 24 h after plating using 8 g ml1 polybrene (Sigma) with plates centrifuged at 1000 g for 20 min to enhance the lentivirus infection efciency. The next day, medium was changed to broblast medium containing 1 mM valproic acid (Sigma), and 3 days later, the medium was changed to Neuronal Medium (ScienCell, Carlsbad, CA, USA) containing 1 mM valproic acid along with selection antibiotics Geneticin, Blasticidin and Puromycin (all Invitrogen). Selection antibiotics were removed after 67 days, and the cells were maintained in Neuronal Medium (ScienCell) with 1 mM valproic acid for 13 days until passaging with Accutase (Sigma) onto a 384-well BIND biosensor.
BIND imagingBIND biosensors used for induced neuronal-like cell (iNLC) imaging were coated with 20 g ml1 poly-ornithine (Sigma) and 20 g ml1 laminin (Sigma) and biosensors used for broblast imaging were coated with2.5 g ml1 bronectin (BD Biosciences, San Jose, CA, USA). iNLCs were seeded at 1000 cells per well, and human broblasts were seeded at 200 cells per well. Biosensors were blocked with 1% bovine serum albumin
(Sigma) in Dulbeccos phosphate-buffered saline (dPBS, Invitrogen) before plating cells to minimize background. After seeding cells, the biosensor was briey centrifuged at 1000 r.p.m. for 10 s to ensure that the cells were contacting the biosensor. The biosensor was equilibrated at 37 C for 1530 min before imaging. Time-lapse BIND images were collected using BIND Scan software.
ImmunocytochemistryAt the same time point and density that iNLCs were plated on BIND biosensors, they were plated on poly-ornithine/laminin coated 384-well plates for immunocytochemistry. Corresponding broblast lines were seeded at 1000 cells per well in 384 well plates. One day later, cells were xed in 4% formaldehyde (Tousimis) in dPBS for 30 min at 25 C, rinsed three times in PBS, and then incubated overnight at 4 C with primary antibodies against Fibroblast (1:10, Miltenyi Biotec, Bergisch Gladbach, Germany), FSP1/S100A4 (1:750, Millipore), VIM (1:50, Abcam, Cambridge, UK), SOX2 (1:200, Abcam), NES (1:500, Millipore), MAP2 (1:5000, EnCor Biotechnology CPCA-MAP2, Gainesville, FL, USA), TUBB3 (1:5000, Sigma T8660) and SYN1 (1:200, Cell Signaling, Danvers, MA, USA) in a blocking solution containing 0.1% Triton, 5% normal goat serum (Invitrogen) and0.1% gelatin (Sigma) in dPBS. Cells were rinsed ve times with dPBS, then incubated for 1 h at 25 C with an Alexa Fluor 488 secondary antibody corresponding to the primary (1:500, Invitrogen A-11039, A-11034 and A-11029) in the same blocking solution containing NucBlue Hoechst 33342 (Life Technologies, Grand Island, NY, USA) to label cellular nuclei. Cells were rinsed three times in dPBS, and images were acquired using an INCell 6000 (GE Healthcare, Piscataway, NJ, USA). Images were rescaled and pseudocolored using Fiji for display purposes with the same range used for each antibody across both cell types.
Data analysisBIND Scan data was segmented and cellular metrics quantied using BIND
View software. Background leveling was implemented with a 17-pixel structural morphological parameter. Segmented objects were classied as cells if they had a PWV minimum of 0.20.35 nm and a maximum of 5 nm above background and had an area greater than 10 pixels. A local background area around each segmented cell was calculated from a 2-pixel radius located 3 pixels outside the boundary of the cell. The average PWV from this local background area was subtracted from the average PWV inside the boundary of the cell to calculate the cellular PWV metric. Cell count, cell fraction and cell perimeter were computed from the mask of the segmented cells. These metrics were exported for each image in the time-lapse series and comprised the time series data in Figure 1b. Delta metrics were calculated as:
metric
metric1:5h - metricbaseline
metricbaseline
GLMs utilized the 'glm' command in Stata 13 (StataCorp, College Station, TX, USA) with default settings for family (Gaussian) and link function (identity), and observations clustered within patients. Including within-plate clustering as well, rather than covarying for plate, did not yield meaningfully different results.
RESULTSGeneration of iNLCsSkin samples from a clinically phenotyped cohort of patients with bipolar 1 disorder and a history of lithium treatment (n = 12) and matched screened healthy control subjects (n = 6) were expanded into broblast lines and subsequently transformed using recombinant lentiviruses carrying transgenes for miR-9/9*-124, NEUROD2, ASCL1 and MYT1L.9 This transformation results in iNLCs, directly transdifferentiated from the starting broblast population. The full duration of time to generate mature neuronal-like cells that express synaptic markers and re action potentials as described by Yoo et al.9 is 45 weeks. However, due to reduced viability we observed over this prolonged time period of differentiation, and the goal of a more rapid screening process, we elected to measure cellular activity at an earlier time point in the transdifferentiation process to facilitate generating reproducible measurements over larger numbers of iNLCs. This period,
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1314 days posttransduction, occurs after antibiotic selection for cells expressing the transgenes, but before the large amount of cellular attrition. Figure 2a shows the timeline of the neural induction.
At this time point, cells are undergoing large morphological changes reminiscent of axonogenesis and dendritogenesis in rodent neurons. We performed immunocytochemistry to characterize the iNLCs along with the source patient broblast line. We selected a panel of antibodies to label broblasts (anti-Fibroblast), broblasts and neural stem cells (S100A4, VIM), neural stem cells only (NES, SOX2) and neurons (MAP2, TUBB3, SYN1). Images for a representative control line are shown in Supplementary Figure 1. Anti-Fibroblast labeled both broblasts and iNLCs. In addition, both broblasts and iNLCs expressed S100A4 and VIM. Expression of markers for neural stem cells only and neurons was present in iNLCs, but not broblasts. These results suggest that iNLCs are an intermediate cell type, expressing markers for both neural stem cells and neurons. Although iNLCs still express broblast markers, they differ from broblasts by expression of neuronal markers.
BIND imaging reveals metrics associated with iNLC growthAfter 1314 days of differentiation, we replated iNLCs on a BIND biosensor consisting of an array of individual biosensor wells in a standard 384-well plate reader format (Figure 2b). BIND biosensors consist of polymer surfaces embossed with grating structures of a precise and uniform periodicity and coated with titanium dioxide. When a broad wavelength source of light is projected to the biosensor surface, a particular resonance frequency is established, governed by the grating structure. The resulting monochromatic light is reected off of the sensor surface to an imaging spectrophotometer and the PWV is captured and measured (Figure 2c). Increases in mass within ~ 150 nm of the sensor surface, including cultured cells which can be seeded and cultured on the biosensors, result in a directly proportional positive shift of the resonant reected PWV. To facilitate neuronal cell growth and attachment, the biosensor was precoated with poly-ornithine and laminin, and titration of iNLC number indicated that an optimal cell density was 18 k cells cm2.
To image the iNLCs on the BIND biosensor, we utilized a BIND Scanner that measures PWV changes on a pixel-by-pixel basis at a spatial resolution of 3.75 3.75 m2, enabling high-contrast visualization and subsequent segmentation of neuronal morphology. As seen from overlays of red uorescent protein-expressing iNLCs, the BIND cell adhesion measurement captures neuronal morphology to a high degree (Figure 2d). The small footprint of the BIND Scanner allows it to be located within a tissue culture incubator, enabling high temporal resolution, time-lapse imaging of cellular responses at physiologic conditions (Figure 2e). As such, we used this imaging modality in a quantitative assay to measure changes in cellular morphology and attachment to the biosensor over the course of 24 h. Examples of sequential images of neurite outgrowth from plating of the cells on the BIND biosensor are shown in Figure 1a. We also observed that the neurite outgrowth tended to follow the linear grating structure of the BIND biosensor (Figure 2d). From these time-lapse images, we could monitor growth in terms of area and perimeter of the cells, as well as extract changes in PWV, a measure of the adhesion of the iNLCs to the biosensor.
To quantify the cellular phenotypes that could be observed on the BIND Scanner, we used BIND View software to segment the BIND scans and compute cell count, cell fraction (fractional area of the sensor covered by cells), cell perimeter and PWV normalized by local background. These metrics were averaged over each well for a given time point with time series over the rst 5 h as shown in Figure 1b. The most dynamic region of cell growth and attachment to the surface occurred during the rst hour after plating. This is qualitatively seen in the time-lapse videos
(Supplementary Video 1) and time series plots of cell fraction, cell perimeter and PWV. As we were interested in identifying phenotypes associated with the temporal dynamics of neuronal growth and differentiation, we looked at baseline-normalized changes in the BIND metrics over the time course when cells have maximally attached. We refer to these as cell count, cell fraction, cell perimeter and PWV (see Materials and Methods for more details). Boxplots summarizing the distribution of these metrics as a function of patient grouping and Alda scale of lithium responsiveness are shown in Figure 1c.
Statistical analysis of BIND metricsTo model the associations between the BIND metrics and subject groups, we used generalized linear models (GLMs)18 with
generalized estimating equations.19 In addition, we included adjustments in these models for the following potential confounding experimental and clinical variables: the date each plate was imaged, sex and age. GLMs are similar to general linear models (for example, multiple regression, ANOVA) but allow greater exibility in modeling outcome variables that are non-normally distributed using alternative distributions (for example, Poisson or negative binomial) and link functions (for example, log-transform or logit links). Mixed models using generalized estimating equation permit the appropriate handling of data that are hierarchically nested (that is, within subjects and plates) and thus likely to be correlated; modeling such correlations ensures appropriate estimation of standard errors and correct P-values in statistical tests. Further analyses controlled for cell count as a means of ensuring that observed phenotypes were not simply a proxy for cell death or segmentation error. Follow-up analyses utilized the same approach to examine the association between an ordinal measure of lithium-responsiveness, the Alda scale and any phenotypes associated with groups in the primary analysis.
Cellular measurements of iNLCs associated with patient lithium response
Figure 3a illustrates marginal means and 95% condence intervals for each cellular metric, by subject group, drawn from GLM. There was a signicant overall difference between patient groups for PWV (x2 = 9.64, P = 0.008) but not for cell count (x2 = 0.93, P = 0.63), cell fraction (x2 = 2.26, P = 0.32) or cell perimeter. After controlling for plate date, sex and age, the signicant overall difference between patient groups persisted for PWV (x2 = 7.02, P = 0.03) but not for cell count (x2 = 2.88, P = 0.24), cell fraction (x2 = 3.54, P = 0.17) or cell perimeter (x2 = 2.45, P = 0.29). For PWV, Bonferroni-corrected post hoc pairwise tests indicated signicant differences between BD lithium responsive and nonresponsive cells (z = 2.65, P = 0.02); neither group differed signicantly from healthy controls (z = 1.48, P = 0.42 for controls (n = 6) versus BD lithium nonresponders (n = 6) and z = 1.36, P = 0.51 for controls versus BD Li responders (n = 6)).
Since cell count could be used as a measure of segmentation error and cell death, we incorporated this value into the GLM as an additional control. The PWV result remained signicant (Walds test, x2 = 10.63, P = 0.005), with Bonferroni-corrected post hoc pairwise differences observed between BD lithium responsive and nonresponsive (z = 3.54, P = 0.001) groups. The remaining two phenotypes cell fraction (x2 = 3.40, P = 0.18) and cell perimeter (x2 = 1.00, P = 0.61) remained nonsignicant. The estimated marginal means derived from the GLM for cell fraction, cell perimeter and PWV, corrected for patient age and sex, plate date and cell count, are shown in Figure 3b with 95% condence intervals.
We also examined the effects of lithium exposure in the patients, as this could contribute to the differences in observed iNLC PWV. In all, ve of six lithium responders, and ve of six
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Figure 1. BIND imaging phenotypes of human iNLCs. (a) BIND images of a representative eld (scale bar, 100 m) at 1.2-h intervals beginning at plating of the cells. Imaging resolution is sufcient to capture outgrowth of cellular processes. (b) Time series quantication of BIND metricscell count, cell fraction, perimeter and PWVover the rst 4 h of continuous imaging shows that the most dynamic region of cellular attachment and growth occurs in the rst 1.5 h. (c) Distribution of baseline-normalized changes in BIND metrics for each phenotype, by patient group. BD, bipolar disorder; iNLC, induced neuronal-like cell; PWV, peak wavelength value.
lithium nonresponders, were treated with lithium at the time of study enrollment, so lithium exposure in the patients themselves is unlikely to account for observed differences in iNLC PWV phenotypes. In GLM models, lithium exposure was not associated with differential PWV (PWV = 0.0009; SE = 0.018, P = 0.96);
whereas patient group differences remained signicant (x2 = 70.2, P = 0.03) in post hoc pairwise comparison of responders and nonresponders (z = 2.64, P = 0.03).
Ordinal measurements of lithium responseIn follow-up analysis, we examined association between PWV and an ordinal measure of lithium response, the Alda scale, rather than dichotomizing the measure of lithium responsivity. As anticipated, these models also showed signicant association (PWV = 0.008; SE = 0.003, P = 0.008), which persisted with inclusion of cell count (PWV = 0.009; SE = 0.003, P = 0.002; Figure 3c). Taken together, these ndings support the notion that there are cellular correlates of lithium response in patients that can be readily monitored and observed in vitro using label-free optical imaging methodology.
Absence of cellular phenotypes in broblastsAlthough the primary analyses focused on characterization of transdifferentiated cells, it is possible that the phenotypes
observed are also present in the cultured broblasts. To address this question, we performed the same BIND measurements and GLM analyses on a subset of the patient broblasts (n = 4 healthy controls, n = 4 BD lithium responders, n = 4 BD lithium nonresponders). Using a GLM correcting for plate date, sex and age, we did not observe statistically signicant differences in the marginal means for PWV by groups, including post hoc contrasts between BD lithium responsive and non-responsive groups (x2 = 0.61, P = 0.74). Likewise, correcting for cell count did not produce signicant differences (x2 = 0.62, P = 0.73).
Effects of acute lithium treatmentWe also investigated the effect of acute lithium exposure on the
BIND phenotypes, by examining lithium at three concentrations(0.3 mM, 0.8 mM, 1 mM) added to the cells at the time of plating on the biosensor. Once again, GLM models were used to examine dose effect, correcting for plate date, sex and age. Supplementary Figure 2 illustrates the PWV measurement by lithium dose (x axis) and experimental group (color). No signicant main effects of treatment were identied (PWV = 0.006; SE = 0.005; P = 0.24), nor any evidence of a group-by-treatment interaction (x2 = 4.66, P = 0.59).
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Figure 2. Generation of BD patient-derived iNLCs and BIND imaging. (a) Fibroblasts transduced with miR-9/9*-124, NEUROD2, ASCL1 and MYT1L undergo selection 3 days after lentiviral infection. RFP expression indicates miR-9/9*-124 expression. Morphological changes occur while cells are undergoing selection. At 14 days posttransduction, cells have elongated processes resembling neurite outgrowth. (b) Nanostructured photonic crystal biosensors form the bottom surface of a 384-well plate onto which cells can adhere. Collimated broadband light is projected onto the biosensor, and the resulting resonant reected light is collected and recorded by an imaging spectrometer, illustrated in c. (d) An overlay of the RFP indicator and BIND scan show that detailed morphology of cells can be captured by the BIND scan and is similar to the morphology seen by uorescent light microscopy of the RFP indicator. (e) Incubated BIND Scanner allows long-term time-lapse imaging of iNLCs. BD, bipolar disorder; iNLC, induced neuronal-like cell; RFP, red uorescent protein.
DISCUSSIONIn this investigation of 18 patient-derived induced neuron lines, we identied a cellular phenotype associated with the lithium responsiveness of bipolar 1 disorder patients. The phenotype itself, PWV, can be interpreted as a measure of adhesion of cells to the biosensor.13 BD lithium nonresponder cells adhered less strongly than cells from bipolar patients who respond well to lithium. Interestingly, cells from control individuals without BD
appeared to be intermediate between lithium-responsive and nonresponsive BD patient cells. Importantly, no signicant phenotypic differences were observed for this measure in cultured bro-blasts, supporting the potential utility of using transdifferentiated cells.
The quantitative metric used in this study, PWV, represents the change in wavelength of light reected from an optical biosensor surface. This change in resonant reected light is mediated by
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*
*
Figure 3. Correlation of cellular BIND metrics to clinical features. (a) The four plots illustrate marginal means and 95% condence intervals for the four cellular phenotypes identied using the BIND Scanner, with adjustment for age, sex and experiment. The asterisk denotes a signicant difference in PWV between BD Li Non-responders and BD Li Responders as indicated by Bonferroni corrected post hoc pairwise testing (P = 0.02). (b) Marginal means and 95% condence intervals for change in cell fraction, cell perimeter and PWV, with adjustment for change in cell count. (c) Results for change in PWV, adjusted as in b, by Alda score (degree of improvement with lithium) group. BD, bipolar disorder; PWV, peak wavelength value.
increases in mass detected within the evanescent eld that extends approximately 200 nm from the sensor surface. Many different cell types can adhere to optical biosensors coated with extracellular matrix components that bind to specic integrins expressed on the cell surface. The role of integrinextracellular matrix interactions on optical biosensors contributing to PWV measurements has been established in cell lines endogenously expressing specic integrins. For example, the human 8866 B cell line endogenously expresses the 47 integrin, which is known to be a ligand for the extracellular matrix protein, MadCAM.13 The
addition of 8866 cells to MadCAM-coated biosensors elicits a strong PWV response whereas a minimal response is measured when biosensors are coated with a control protein. Furthermore, the PWV response of 8866 cells on MadCAM-coated sensors is blocked to completion by an 4-specic antibody, demonstrating that the PWV signal is mediated by integrinCAM interactions. Similarly, Jurkat cells expressing the 41 integrin produce a PWV signal on optical biosensors coated with VCAM (unpublished results). Specic inhibitors of the 41-VCAM interaction completely inhibit this signal, as does the addition of EDTA to chelate divalent cations known to be required for integrin-mediated cell adhesion. Taken together, these results demonstrate that the PWV signal is a cell adhesion-mediated measurement governed by integrinCAM interactions. The positive shift in the reected wavelength upon integrinCAM engagement can be explained by an increase in cellular mass entering the evanescent eld as the cell adheres more strongly to the sensor surface.
Strengths of the present study include a single, clinically-homogeneous and rigorously phenotyped cohort, including
matched psychiatrically screened healthy controls. Treatment response was assessed using a validated, gold-standard measure of lithium responsiveness.16 Conversely, a key caveat is the modest effect size observed, and the substantial risk of type 1 error arising in this relatively small cohort. Despite evidence that lithium response is familial,15,20,21 the stability of such response
within an individual over time remains to be established. Furthermore, extrapolating from our cellular observations to mature neurons is difcult; and although we have shown that the transformed broblasts express structural neuronal markers, they still comprise a heterogeneous population of cells which require additional differentiation before they are able to re action potentials or form synapses or synapse-like structures.9 Nonetheless, the potential utility of a cell-based model of lithium response in BD should be apparent, and more generally, a biomarker for lithium response could have substantial clinical value, allowing more precise weighing of risks and benets of lithium treatment. As one of only two pharmacotherapies in all of psychiatry was shown to diminish suicide risk,22 lithium treatment remains a viable but underused clinical option where the availability of a biomarker could increase patient and clinician acceptability.
We did not observe an acute effect of lithium exposure in these assays. In vitro investigation of lithium remains challenging because of an apparently narrow therapeutic window (that is, toxicity at higher doses) as well as a lack of clear correspondence between in vitro and in vivo lithium levels. We note that, in human studies in bipolar disorder, lithium may require 68 weeks or more for clinical efcacy, so it is possible that chronic lithium exposure
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would yield more relevant results. We also did not observe a signicant reduction in cell growth among BD patient cells compared with healthy controls, which might have been anticipated based on structural brain imaging showing a decrease in gray matter volume in the brains of BD patients versus controls.23 However, such decreases have been attributed to oxidative stress-induced apoptosis,24 something which our cellular model may not capture.
The cell adhesion phenotype we observed is consistent with other emerging observations in psychiatric disease models. Cells derived from schizophrenia patients have been associated with less adhesion and increased motility,25 and multiple postmortem brain studies of psychiatric disease patients show alterations in the polysialylated neural cell adhesion molecule,26,27 a protein that
has a key role in cell migration. In addition, genome-wide association studies of schizophrenia and BD implicate genes involved in cell adhesion.28,29
The potential mechanisms by which variation in cell adhesion could give rise to a connectopathy lies in considering the role that cell adhesion molecules have in affecting synaptic dynamics and structural plasticity in neurons. Pathology in the microstructure of synapses is associated with psychiatric disorders,30 and the
regulation of synaptic plasticity depends, in large part, on appropriate functioning of the actin cytoskeleton to support vesicle cycling and postsynaptic receptors.31 Recent ndings in a rodent model have correlated a behavioral phenotype with a cytoskeletal defect: in particular, a duplication of SHANK3, a synaptic scaffold and actin-binding protein, was associated with manic-like behavior similar to the hyperkinetic phenotype of patients with SHANK3 duplications. Increases in F-actin levels, mediated through dysregulation of ARP2/3 complexes, which are central regulators of actin-mediated remodeling and cell motility, were observed in hippocampal neurons cultured from these mice.32 Other lines of evidence have demonstrated that cadherins and catenins engage in activity-dependent modulation of axon-spine contacts.33 Given that lithium has been demonstrated to affect neuron growth cones34 and regulate cytoskeletal dynamics via GSK3 inhibition,35 it is suggested that our observed cell adhesion phenotype may provide an initial step in characterizing the pathophysiology of BD and efciently screening for novel therapeutics.
A key advantage of the cellular approach we describe is that it allows rapid characterization of many cellular phenotypes with a scalable, label-free platform, making it amenable to high-throughput chemical screens, RNAi-based screens, large-scale investigations of genome editing, and potentially, development of clinical diagnostic tools. The extent of its utility will be claried by measurement of phenotypes across disorders and treatments; at minimum, it should facilitate efforts to elucidate mechanism of action of the gold-standard treatment for a disorder that contributes substantially to morbidity from psychiatric disease worldwide.
CONFLICT OF INTEREST
RHP has received consulting fees or served on scientic advisory boards for Proteus Biomedical, Pamlab, PerfectHealth, Pzer, PsyBrain, Genomind and RIDventures, research grant support from Proteus Biomedical and royalties from UBC. The remaining authors declare no conict of interest.
ACKNOWLEDGMENTS
We acknowledge the helpful discussion and feedback from members of the Perlis, Haggarty and Crabtree Laboratories and X-Body Biosciences. We also acknowledge Bob Weinberg and Didier Trono for the use of lentiviral packaging plasmids deposited with Addgene. This work was supported through funding from the National Institute of Mental Health (R21MH093958, R33MH087896). Biobank collection was further supported by the Stanley Center for Psychiatric Research.
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Copyright Nature Publishing Group Aug 2014
Abstract
Development of novel treatments and diagnostic tools for psychiatric illness has been hindered by the absence of cellular models of disease. With the advent of cellular reprogramming, it may be possible to recapitulate the disease biology of psychiatric disorders using patient skin cells transdifferentiated to neurons. However, efficiently identifying and characterizing relevant neuronal phenotypes in the absence of well-defined pathophysiology remains a challenge. In this study, we collected fibroblast samples from patients with bipolar 1 disorder, characterized by their lithium response (n=12), and healthy control subjects (n=6). We identified a cellular phenotype in reprogrammed neurons using a label-free imaging assay based on a nanostructured photonic crystal biosensor and found that an optical measure of cell adhesion was associated with clinical response to lithium treatment. This cellular phenotype may represent a useful biomarker to evaluate drug response and screen for novel therapeutics.
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